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Illumination Normalization-Based Face Detection under Varying Illumination

机译:光照变化下基于光照归一化的人脸检测

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A number of well-known learning-based face detectors can achieve extraordinary performance in controlled environments. But face detection under varying illumination is still challenging. Possible solutions to this illumination problem could be creating illumination invariant features or utilizing skin color information. However, the features and skin colors are not sufficiently reliable under difficult lighting conditions. Another possible solution is to do illumination normalization (e.g., Histogram Equalization (HE)) prior to executing face detectors. However, applications of normalization to face detection have not been widely studied in the literature. This paper applies and evaluates various existing normalization methods under the framework of combining the illumination normalization and two learning-based face detectors (Haar-like face detector and LBP face detector). These methods were initially proposed for different purposes (face recognition or image quality enhancement), but some of them significantly improve the original face detectors and lead to better performance than HE according to the results of the comparative experiments on two databases. Meanwhile, we propose a new normalization method called segmentation-based half histogram stretching and truncation (SH) for face detection under varying illumination. It first employs Otsu method to segment the histogram (intensities) of the input image into several spans and then does the redistribution on the segmented spans. In this way, the non-uniform illumination can be efficiently compensated and local facial structures can be appropriately enhanced. Our method obtains good performance according to the experiments.
机译:许多著名的基于学习的面部检测器可以在受控环境中实现出色的性能。但是在变化的光照下人脸检测仍然具有挑战性。该照明问题的可能解决方案可能是创建照明不变特征或利用肤色信息。但是,这些特征和肤色在困难的照明条件下不够可靠。另一种可能的解决方案是在执行面部检测器之前进行照明标准化(例如,直方图均衡化(HE))。然而,归一化在面部检测中的应用尚未在文献中得到广泛研究。本文在结合照明归一化和两个基于学习的人脸检测器(Haar-like人脸检测器和LBP人脸检测器)的框架下,应用并评估了各种现有的归一化方法。这些方法最初是为不同目的(人脸识别或图像质量增强)而提出的,但根据两个数据库上的比较实验结果,其中一些方法可以显着改善原始人脸检测器,并比HE产生更好的性能。同时,我们提出了一种新的归一化方法,称为基于分段的半直方图拉伸和截断(SH),用于在变化的光照下进行面部检测。它首先使用Otsu方法将输入图像的直方图(强度)分割为几个跨度,然后对分割后的跨度进行重新分配。这样,可以有效地补偿不均匀照明,并且可以适当地增强局部面部结构。根据实验,我们的方法获得了良好的性能。

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